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Research on the prediction method of grain yield basing on the BP network in Jilin province

机译:吉林省BP网络粮食产量预测方法研究

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Aiming at solving the problems of poor accuracy and large fluctuations in the grain yield prediction, the paper selects food production data of Jilin province in 1970-2011 as the research object, and takes 7 factors which influence agricultural production as the impact factors. The research adopts 2 prediction methods - regression analysis and the BP neural network analysis respectively, sets up the prediction models and makes the comparative analysis to the varies of prediction yield and actual production. The final end shows that the prediction mean accuracy of regression analysis is 86.9%, the prediction mean accuracy of the BP neural network analysis is 91.4%, the BP neural network is more suitable for grain yield prediction in Jilin province.
机译:旨在解决粮食产量预测中差和大波动的问题,本文选择了吉林省1970 - 2011年的粮食生产数据作为研究对象,并采取7种影响农业生产作为影响因素的因素。该研究采用2预测方法 - 分别进行了回归分析和BP神经网络分析,建立了预测模型,使比较分析对预测产量和实际生产的变化。最后的末端表明,回归分析的预测平均准确性为86.9%,预测均线的预测性均准确度为91.4%,BP神经网络更适合吉林省粮食产量预测。

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